At the Legend level, AI is no longer a feature.It becomes infrastructure. This episode explores the Agentblazer Legend path as the discipline of engineering autonomous systems—where Salesforce agents move real money, change real records, and operate with real risk. We go deep into what separates a Legend from every other AI role in the Salesforce ecosystem: Why autonomous agents require systems architecture, not prompt tuning How the Atlas Reasoning Engine plans, executes, retries, and optimizes decisions Designing agents as probabilistic systems with deterministic guardrails How Data Cloud, Zero Copy, and RAG enable real-time enterprise reasoning Why governance shifts from access control to action control How the Einstein Trust Layer enforces security, masking, auditability, and compliance Observability, testing, regression, and lifecycle management for AI agents Why Flex Credits force architects to design for efficiency, not experimentation How Legend architects measure ROI in risk avoided, cost-to-serve reduced, and revenue protected This episode is for enterprise architects, senior developers, platform owners, and AI governance leaders who are responsible for putting autonomous agents into production—safely, scalably, and sustainably. Just a clear explanation of what it actually takes to run a business on agentic systems, and why the Agentblazer Legend role is emerging as a non-negotiable pillar of the modern enterprise architecture. Subscribe to the CRMPosition podcast for deep, system-level analysis of CRM, AI, and platform strategy—designed for professionals who carry architectural accountability, not just curiosity. [Foundation]